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I want to initialise an empty DataFrame in Spark (Scala). The number of columns in the DataFrame has to be 1000 and an additional Label column, and initially the dataframe should be empty.

While inserting new Rows to the DataFrame, I have to insert values in only specific columns based on list values.

If my List is val myList = List(List(4), List(2,3,6), List(5,8)...)

I want my dataframe to contain values like this:

Id col1 col2 col3 col4 col5 col6 col7 col8.... col1000 Label 1 0 0 0 1 0 0 0 0 0 x 2 0 1 1 0 0 1 0 0 0 y 3 0 0 0 0 1 0 0 1 0 x ....

Any approach how I could proceed on this?

  • how are you supposed to generate the Label column? and what have you tried? – Ramesh Maharjan Jun 20 '18 at 2:26
  • I am generating the label column based on the features available in the columns. For example: If we have a row (2,3,6), I insert 1's at (col2, col3) and 6 as label; then 1's at (col3, col6) and 2 as label; and finally 1'st at (col2, col6) and 3 as label. – Jeet Banerjee Jun 20 '18 at 9:23
  • and what have you tried? – Ramesh Maharjan Jun 20 '18 at 9:27
0

Spark dataframes are immutable so it is not possible to append / insert rows. Instead you can just create new dataframe with single row and use UNIONALL and append it to the original and assigned again to the original like

var df1=Seq((1,0,1),(0,0,0)).toDF("col1","col2","col3")

val df2=Seq((1,1,1)).toDF("col1","col2","col3")

df1=df1.unionAll(df2)

If you have

scala> df1.show
+----+----+----+
|col1|col2|col3|
+----+----+----+
|   1|   0|   1|
|   0|   0|   0|
+----+----+----+

and

scala> df2.show
+----+----+----+
|col1|col2|col3|
+----+----+----+
|   1|   1|   1|
+----+----+----+

Then you can do like this

df1=df1.unionAll(df2)

Output:

scala> df1.show
+----+----+----+
|col1|col2|col3|
+----+----+----+
|   1|   0|   1|
|   0|   0|   0|
|   1|   1|   1|
+----+----+----+

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